Prediction of human gait activities using wearable sensors

Proc Inst Mech Eng H. 2021 Jun;235(6):676-687. doi: 10.1177/09544119211001238. Epub 2021 Mar 17.

Abstract

This paper aims to enhance the accuracy of human gait prediction using machine learning algorithms. Three classifiers are used in this paper: XGBoost, Random Forest, and SVM. A predefined dataset is used for feature extraction and classification. Gait prediction is determined during several locomotion activities: sitting (S), level walking (LW), ramp ascend (RA), ramp descend (RD), stair ascend (SA), stair descend (SD), and standing (ST). The results are gained for steady-state (SS) and overall (full) gait cycle. Two sets of sensors are used. The first set uses inertial measurement units only. The second set uses inertial measurement units, electromyography, and electro-goniometers. The comparison is based on prediction accuracy and prediction time. In addition, a comparison between the prediction times of XGBoost with CPU and GPU is introduced due to the easiness of using XGBoost with GPU. The results of this paper can help to choose a classifier for gait prediction that can obtain acceptable accuracy with fewer types of sensors.

Keywords: SVM; XGBoost; gait prediction; machine learning; prosthetics; random forest.

MeSH terms

  • Algorithms
  • Gait
  • Humans
  • Machine Learning
  • Walking
  • Wearable Electronic Devices*